通过整合物理信息神经网络的深度强化学习形成弹性动态微电网

IF 7.5 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS
Mingze Xu , Shunbo Lei , Chong Wang , Liang Liang , Junhua Zhao , Chaoyi Peng
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引用次数: 0

摘要

动态微电网的形成可以提高配电系统的拓扑灵活性,尤其是在极端事件发生时,从而促进更高效的恢复过程。然而,现有研究忽略了冷负荷骤增对系统恢复工作的影响。突然的负荷激增会导致发电机和变压器过载,从而导致系统恢复过程失败。本研究通过系统的动态微电网形成,利用拓扑灵活性来减轻冷负荷拾取的影响,从而提高顺序负荷恢复的效率。为了减轻错综复杂的运行约束和冷负荷恢复条件固有的不确定性所带来的计算复杂性,本文提出了一种新颖的无模型框架。与现有的深度强化学习模型不同,我们通过物理信息神经网络将物理约束信息纳入模型,将优化问题的解视为知识,使代理能够更高效、更稳定地学习操作约束。所提出的方法与任何利用神经网络优势行动者批判框架的深度强化学习算法兼容,并可集成到任何深度强化学习算法中。本研究采用深度确定性策略梯度算法作为研究的代表实例。在改进的 IEEE 123 节点测试馈线上验证了所提方法的有效性和泛化性能,同时使用 IEEE 8500 节点测试馈线系统评估了其可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resilient dynamic microgrid formation by deep reinforcement learning integrating physics-informed neural networks
Dynamic microgrid formation can enhance topological flexibility within the distribution system, particularly during extreme events, thereby facilitating a more efficient restoration process. However, existing research has overlooked the impact of cold load pickup on system restoration efforts. A sudden load spike can lead to the overloading of generators and transformers, which can result in the failure of the system restoration process. This study leverages the topological flexibility through dynamic microgrid formation of the system to mitigate the impact of cold load pickup, thereby enhancing the efficiency of sequential load restoration. To alleviate the computational complexity arising from intricate operational constraints and the uncertainties inherent in cold load pickup conditions, this paper proposes a novel model-free framework. Unlike existing deep reinforcement learning models, we incorporate physical constraint information into the model by means of physics-informed neural networks, where the solution of an optimization problem is regarded as knowledge, enabling the agent to learn operational constraints more efficiently and stably. The proposed approach is compatible with and can be integrated into any deep reinforcement learning algorithm that utilizes the advantage actor–critic framework with neural networks. This research employs the deep deterministic policy gradient algorithm as a representative example for investigation. The effectiveness and generalization performance of the proposed method are validated on a modified IEEE 123-node test feeder, while its scalability is assessed using the IEEE 8500-node test feeder system.
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来源期刊
Engineering Applications of Artificial Intelligence
Engineering Applications of Artificial Intelligence 工程技术-工程:电子与电气
CiteScore
9.60
自引率
10.00%
发文量
505
审稿时长
68 days
期刊介绍: Artificial Intelligence (AI) is pivotal in driving the fourth industrial revolution, witnessing remarkable advancements across various machine learning methodologies. AI techniques have become indispensable tools for practicing engineers, enabling them to tackle previously insurmountable challenges. Engineering Applications of Artificial Intelligence serves as a global platform for the swift dissemination of research elucidating the practical application of AI methods across all engineering disciplines. Submitted papers are expected to present novel aspects of AI utilized in real-world engineering applications, validated using publicly available datasets to ensure the replicability of research outcomes. Join us in exploring the transformative potential of AI in engineering.
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